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A study of applying subspace based pronunciation modeling in verifying pronunciation accuracy

机译:基于子空间的语音建模在语音准确性验证中的研究

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This paper investigates a new approach for detecting phoneme level mispronunciations from utterances obtained from impaired children with neuromuscular disorders. This new pronunciation verification (PV) approach is obtained from the subspace based Gaussian mixture model (SGMM) based pronunciation model, where a set of state level projection vectors is applied for representing phonetic variability. SGMM models are trained from disabled speakers' utterances and PV scores are computed directly from distances between disabled and reference speaker projection vectors. An experimental study was performed to evaluate the performance of the SGMM based approach with respect to an approach based on the lattice posterior probabilities. A reduction in equal error rate (EER) of approximately 15% was obtained when the SGMM based scores were combined with lattice posterior probabilities.
机译:本文研究了一种新的方法,该方法可以从患有神经肌肉疾病的受损儿童的语音中检测音素水平的发音错误。这种新的语音验证(PV)方法是从基于子空间的高斯混合模型(SGMM)的语音模型中获得的,在该模型中,一组状态级别的投影矢量用于表示语音变异性。 SGMM模型是根据残疾说话者的话语训练的,PV分数是直接根据残疾说话者与参考扬声器的投影向量之间的距离计算的。进行了一项实验研究,以评估基于SGMM的方法相对于基于晶格后验概率的方法的性能。当基于SGMM的得分与晶格后验概率相结合时,平均错误率(EER)降低了约15%。

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